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利用推特数据评估性少数群体和性别少数群体中的心理健康信号。

Assessing Mental Health Signals among Sexual and Gender Minorities using Twitter Data.

作者信息

Zhao Yunpeng, Guo Yi, He Xing, Huo Jinhai, Wu Yonghui, Yang Xi, Bian Jiang

机构信息

Department of Health Outcomes and Biomedical Informatics.

Department of Health Services Research, Management and Policy, University of Florida, Gainesville, Florida, USA.

出版信息

2018 IEEE Int Conf Healthc Inform Workshop (2018). 2018 Jun;2018:51-52. doi: 10.1109/ICHI-W.2018.00015. Epub 2018 Jul 19.

Abstract

Sexual and gender minorities' (SGMs) mental health needs remain little understood. Because of stigma and discrimination, SGMs are often unwilling to self-identify and reluctant to participate in traditional surveys. On the other hand, social media platforms have brought rapid changes to the health communication landscape and provided us a new data source for health surveillance of vulnerable populations. In this study, we explored machine learning methods to identify SGM individuals through finding their self-identifying tweets; then, applied a lexicon-based text analysis method to extract emotion and mental health signals from SGMs' Twitter timelines. We found that 1) SGM people have expressed more negative feelings in their tweets, and 2) within SGM populations, gay and genderfluid individuals tend to use more words related to negative emotions, anger, anxiety, and sadness in their tweets.

摘要

性与性别少数群体(SGMs)的心理健康需求仍鲜为人知。由于污名化和歧视,SGMs往往不愿自我认同,也不愿参与传统调查。另一方面,社交媒体平台给健康传播格局带来了迅速变化,并为我们提供了一个用于弱势人群健康监测的新数据源。在本研究中,我们探索了机器学习方法,通过查找他们自我认同的推文来识别SGM个体;然后,应用基于词典的文本分析方法,从SGMs的推特时间线中提取情绪和心理健康信号。我们发现:1)SGMs人群在推文中表达了更多负面情绪;2)在SGM群体中,男同性恋者和流动性别者在推文中往往使用更多与负面情绪、愤怒、焦虑和悲伤相关的词汇。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e702/6711604/e0a8989331e8/nihms-998892-f0001.jpg

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